Distance estimation algorithm for plug-in hybrid electric vehicle control strategy

This paper presents a destination prediction algorithm based on a markov model method to build a probability matrix of possible destination GPS coordinates. This matrix is then used in a real time algorithm to predict the distance remaining when the vehicle is running. Simulation based on real GPS data shows the precision of the algorithm and its possible implementation in the control strategy for a PHEV.

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